Classification Accuracy Improvement for Small-Size Citrus Pests and Diseases Using Bridge Connections in Deep Neural Networks

Author:

Xing ShuliORCID,Lee Malrey

Abstract

Due to the rich vitamin content in citrus fruit, citrus is an important crop around the world. However, the yield of these citrus crops is often reduced due to the damage of various pests and diseases. In order to mitigate these problems, several convolutional neural networks were applied to detect them. It is of note that the performance of these selected models degraded as the size of the target object in the image decreased. To adapt to scale changes, a new feature reuse method named bridge connection was developed. With the help of bridge connections, the accuracy of baseline networks was improved at little additional computation cost. The proposed BridgeNet-19 achieved the highest classification accuracy (95.47%), followed by the pre-trained VGG-19 (95.01%) and VGG-19 with bridge connections (94.73%). The use of bridge connections also strengthens the flexibility of sensors for image acquisition. It is unnecessary to pay more attention to adjusting the distance between a camera and pests and diseases.

Funder

National Research Foundation of Korea

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

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1. Advancing Citrus Disease Diagnosis: Application of EfficientNetB3 for Precise Classification of Orange Tree Pathologies;2024 International Conference on Emerging Technologies in Computer Science for Interdisciplinary Applications (ICETCS);2024-04-22

2. Statistical Selection of CNN Models for Citrus Fruit Disease Prediction;2023 International Conference on Sustainable Computing and Smart Systems (ICSCSS);2023-06-14

3. Rice pest identification based on multi-scale double-branch GAN-ResNet;Frontiers in Plant Science;2023-04-14

4. Accurate Detection Algorithm of Citrus Psyllid Using the YOLOv5s-BC Model;Agronomy;2023-03-17

5. Disease detection and physical disorders classification for citrus fruit images using convolutional neural network;Journal of Food Measurement and Characterization;2022-12-31

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